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Basic System Properties
Dr. S. N. Sharma
Electrical Engineering Department
Sardar Vallabhbhai National Institute Technology, Surat.
Subject : Network Systems
Basic System Properties
 Basic system properties P. 44-47, Signals and Systems, A V
Oppenheim, A S Willsky with Nawab
 Memoryless systems
 A system is said to be memoryless system if the output at the present
instant depends on the input on the present instant.
 That does not depend on past and present inputs.
 The example is the square law detector.
 Consider the system, the square law detector, using the input and the
output
)
(t
x
.
t
y
).
(
2
t
x
yt 
Basic System Properties
 Invertibility and inverse systemA system
 A system is said to be invertible if the distinct input produces the
distinct output. The system with the invertibility property are described
as the inverse system. Consider the system
 Where are the outputs and the inputs respectively. Thus can
be expressed as
 Note: This concept has found application in the Encoder design, since
the input of the encoder is recovered at the output of the the decoder.
 The decoder can be regarded as the inverse of the encoder. The encoder
is the inverse system.
),
(
2 t
x
yt 
)
(
and t
x
yt
.
2
1
t
t
t
t x
w
the
to
leading
y
w 

Basic System Properties
 Causal system
 A system is said to be the causal if the present and past values of the
input produce the present value of the output. The Causal system are
physically realizable.
 That is regarded as the non-anticipatve. That implies that one can not
anticipate the future value of the input from the present value of the
input. For the LTI system, the impulse response vanishes, i.e.
Note:
(i) Interpret the equation by guessing its system interpretation and physics.
(ii) Usefulness: advanced courses and competitive examinations
.
0
,
0 
 t
ht
Basic System Properties
 Time-varying system:
 A time-varying system is described
 The input argument indicates the system parameters are time-
varying. That is same as saying that the system with variable
coefficients. The linear version of the system is
 Another way of looking the time-time varying system: if the input is
delayed by certain time interval, then the output delayed by the same
time interval.
).
,
( t
t x
t
f
x 

t
)
,
( t
t x
t
f
x 

t
t
t x
A
x 

Basic System Properties
 Time-invariant system:
 A time-invariant system is described as
 The absence of the input argument indicates the system parameters
are not time-varying. That is same as saying that the system with
constant coefficients. The linear version of the above time-invariant
system is
 Another way of looking the time-time varying system: if the input is
delayed by certain time interval, then the output delayed by the same
time interval.
t
).
( t
t x
f
x 

)
( t
t x
f
x 
 .
t
t Ax
x 

Basic System Properties
 Time-invariant vs Time varying :
then the solution
 On the other hand, for the time-invariant case
 Stationarity :
 The stationarity is an important concept. That indicates that the signal
is stationary implies that signal and related property do not depend on
the time but the time interval.
 Note that time-invariant system has stationarity properties.
)
(t
u
B
x
A
x t
t
t
t 






d
u
B
ds
A
x
ds
A
x
t
t
t
s
t
t
t
s
t )
(
)
exp(
)
exp(
0
0
0
 
 


.
)
(
)).
(
exp(
))
(
exp(
0
0
0 

  d
u
B
t
A
x
t
t
A
x
t
t
t
t  




Basic System Properties
 Linearity:
(i) It has two parts additivity and homogeneity
(ii) The supervision theorem is a consequence of the linearity.
(iii) Linearity is tasted using the following: input and output relation in the
algebraic form or the linear homogeneous equation in state and input
setting in the time-domain.
Basic System Properties
 Stability of the System
 In the general framework, the bounded input produces the bounded
output. Then the system is stable.
 Suppose the system input is and the output is the impulse
response is Then input-output relation is
 The system is stable if and only if is absolutely integrable. The
absolute integrabilty implies
)
(t
u ),
(t
y
).
(t
h
.
)
(
)
(
)
(
)
(
)
(
0
0

 



t
t
d
u
t
h
d
t
u
h
t
y 





)
(t
h
.
)
(
0


 dt
t
h
t
Basic System Properties
 Useful Signal
 Impulse signal: In the continuous time case, the impulse function is the
impulse signal that is the Dirac delta function.
otherwise
 The unit step signal has the following properties:
otherwise
 The ramp signal
)
(t
u
,
)
( 

t
 0

t
,
0

0
,
1
)
( 
 t
t
u
,
0

.
0
),
(
)
( 
 t
t
tu
t
r
Basic System Properties
 Note:-
 Any signal multiplied with the unit step signal gives the right-sided
signal .For example where is the arbitrary signal , ,
is the unit step signal then is the right-sided signal.
 In Electrical Engineering, we study the right sided signal. For example,
is the double sided signal and the is the right-sided
signal.
 Relationship between the impulse signal and the unit step signal
, thus
 Alternatively,
)
(
)
( t
u
t
x )
(t
x )
(t
u
)
(
)
( t
u
t
x
t

sin )
(
sin t
u
t

)
(t

)
(t
u
)
(
)
( t
t
u
dt
d


 






t
d
t
d
t
u
0
.
)
(
)
(
)
( 





Basic System Properties
 Question: Why are the impulse, unit step and ramp signals are test
signals
 Answer:- The above input signals unfold the transient response and
steady state response of the system, conveniently.
 The qualitatively characteristics of the system, Peak overshoot, peak
time, rise time, peak time, settling time can be studied using the closed
form expression.
 Prove that the following:
 The input-output relation in the algebraic form
 Describes the system is not linear. Comment about
c
mx
y 

.
mx
y 
Basic System Properties
 Consider a system S whose input and the output are related by
 To determine whether system S is linear
 Answer: Yes. We prove it. The above input-output relation denotes the
time is the independent variable and and are the
dependendent variables. The first system is time-varying not time-
invariant.
 About the linearity
 Consider the input to the system is then the response
is
t
x t
y
t
t tx
y 
t t
x t
y
)
(
)
( 2
1 t
x
t
x t
t 
 
where
,
~
t
y
)
(
)
(
),
(
)
( 2
2
1
1 t
y
t
x
t
t
y
t
tx 

Basic System Properties
 The above is linear system. The linearity holds for the time-invariant
and time varying system. Thus, there is a concepts of linear time-varying
as well as time-invariant.
 Consider the input to the system is S whose input and output is
are related by
 To determine whether system S is linear.
 Answer: We prove it.
 The above input-output relation denotes the time is the independent
variable and and are the dependendent variables. The first
system is time-invariant not time-varying.
t
x t
y
2
t
t x
y 
t
t
x t
y
)
(
)
(
))
(
)
(
(
~
2
1
2
1 t
x
t
t
x
t
t
x
t
x
t
y t
t
t
t
t 


 



)
(
)
( 2
1 t
x
t
t
x
t t
t 
 

).
(
)
( 2
1 t
y
t
y t
t 
 

Basic System Properties
 About the linearity
 Consider the input to the system is then the
response is
(i)
 Then
 The first set of equation suggests that
 Exercise: Check the linearity of the following:
 Using the methods adopted in the previous two excercises.
)
(
)
( 2
1 t
x
t
x t
t 
 
where
,
~
t
y
)
(
)
(
),
(
)
( 2
2
2
1
2
1 t
y
t
x
t
y
t
x 

)
(
)
(
2
)
(
)
(
))
(
)
(
(
~
2
1
2
2
2
2
1
2
2
2
1 t
x
t
x
t
x
t
x
t
x
t
x
y t
t
t
t
t
t
t 




 




)
(
)
(
2
)
(
)
(
~
2
1
2
2
1
2
t
y
t
y
t
y
t
y
y t
t
t
t
t 


 


)
(
)
( 2
2
1
2
t
y
t
y t
t 
 

3
)
(
2
)
( 
 n
x
n
y

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Basic System Properties.ppt

  • 1. Basic System Properties Dr. S. N. Sharma Electrical Engineering Department Sardar Vallabhbhai National Institute Technology, Surat. Subject : Network Systems
  • 2. Basic System Properties  Basic system properties P. 44-47, Signals and Systems, A V Oppenheim, A S Willsky with Nawab  Memoryless systems  A system is said to be memoryless system if the output at the present instant depends on the input on the present instant.  That does not depend on past and present inputs.  The example is the square law detector.  Consider the system, the square law detector, using the input and the output ) (t x . t y ). ( 2 t x yt 
  • 3. Basic System Properties  Invertibility and inverse systemA system  A system is said to be invertible if the distinct input produces the distinct output. The system with the invertibility property are described as the inverse system. Consider the system  Where are the outputs and the inputs respectively. Thus can be expressed as  Note: This concept has found application in the Encoder design, since the input of the encoder is recovered at the output of the the decoder.  The decoder can be regarded as the inverse of the encoder. The encoder is the inverse system. ), ( 2 t x yt  ) ( and t x yt . 2 1 t t t t x w the to leading y w  
  • 4. Basic System Properties  Causal system  A system is said to be the causal if the present and past values of the input produce the present value of the output. The Causal system are physically realizable.  That is regarded as the non-anticipatve. That implies that one can not anticipate the future value of the input from the present value of the input. For the LTI system, the impulse response vanishes, i.e. Note: (i) Interpret the equation by guessing its system interpretation and physics. (ii) Usefulness: advanced courses and competitive examinations . 0 , 0   t ht
  • 5. Basic System Properties  Time-varying system:  A time-varying system is described  The input argument indicates the system parameters are time- varying. That is same as saying that the system with variable coefficients. The linear version of the system is  Another way of looking the time-time varying system: if the input is delayed by certain time interval, then the output delayed by the same time interval. ). , ( t t x t f x   t ) , ( t t x t f x   t t t x A x  
  • 6. Basic System Properties  Time-invariant system:  A time-invariant system is described as  The absence of the input argument indicates the system parameters are not time-varying. That is same as saying that the system with constant coefficients. The linear version of the above time-invariant system is  Another way of looking the time-time varying system: if the input is delayed by certain time interval, then the output delayed by the same time interval. t ). ( t t x f x   ) ( t t x f x   . t t Ax x  
  • 7. Basic System Properties  Time-invariant vs Time varying : then the solution  On the other hand, for the time-invariant case  Stationarity :  The stationarity is an important concept. That indicates that the signal is stationary implies that signal and related property do not depend on the time but the time interval.  Note that time-invariant system has stationarity properties. ) (t u B x A x t t t t        d u B ds A x ds A x t t t s t t t s t ) ( ) exp( ) exp( 0 0 0       . ) ( )). ( exp( )) ( exp( 0 0 0     d u B t A x t t A x t t t t      
  • 8. Basic System Properties  Linearity: (i) It has two parts additivity and homogeneity (ii) The supervision theorem is a consequence of the linearity. (iii) Linearity is tasted using the following: input and output relation in the algebraic form or the linear homogeneous equation in state and input setting in the time-domain.
  • 9. Basic System Properties  Stability of the System  In the general framework, the bounded input produces the bounded output. Then the system is stable.  Suppose the system input is and the output is the impulse response is Then input-output relation is  The system is stable if and only if is absolutely integrable. The absolute integrabilty implies ) (t u ), (t y ). (t h . ) ( ) ( ) ( ) ( ) ( 0 0       t t d u t h d t u h t y       ) (t h . ) ( 0    dt t h t
  • 10. Basic System Properties  Useful Signal  Impulse signal: In the continuous time case, the impulse function is the impulse signal that is the Dirac delta function. otherwise  The unit step signal has the following properties: otherwise  The ramp signal ) (t u , ) (   t  0  t , 0  0 , 1 ) (   t t u , 0  . 0 ), ( ) (   t t tu t r
  • 11. Basic System Properties  Note:-  Any signal multiplied with the unit step signal gives the right-sided signal .For example where is the arbitrary signal , , is the unit step signal then is the right-sided signal.  In Electrical Engineering, we study the right sided signal. For example, is the double sided signal and the is the right-sided signal.  Relationship between the impulse signal and the unit step signal , thus  Alternatively, ) ( ) ( t u t x ) (t x ) (t u ) ( ) ( t u t x t  sin ) ( sin t u t  ) (t  ) (t u ) ( ) ( t t u dt d           t d t d t u 0 . ) ( ) ( ) (      
  • 12. Basic System Properties  Question: Why are the impulse, unit step and ramp signals are test signals  Answer:- The above input signals unfold the transient response and steady state response of the system, conveniently.  The qualitatively characteristics of the system, Peak overshoot, peak time, rise time, peak time, settling time can be studied using the closed form expression.  Prove that the following:  The input-output relation in the algebraic form  Describes the system is not linear. Comment about c mx y   . mx y 
  • 13. Basic System Properties  Consider a system S whose input and the output are related by  To determine whether system S is linear  Answer: Yes. We prove it. The above input-output relation denotes the time is the independent variable and and are the dependendent variables. The first system is time-varying not time- invariant.  About the linearity  Consider the input to the system is then the response is t x t y t t tx y  t t x t y ) ( ) ( 2 1 t x t x t t    where , ~ t y ) ( ) ( ), ( ) ( 2 2 1 1 t y t x t t y t tx  
  • 14. Basic System Properties  The above is linear system. The linearity holds for the time-invariant and time varying system. Thus, there is a concepts of linear time-varying as well as time-invariant.  Consider the input to the system is S whose input and output is are related by  To determine whether system S is linear.  Answer: We prove it.  The above input-output relation denotes the time is the independent variable and and are the dependendent variables. The first system is time-invariant not time-varying. t x t y 2 t t x y  t t x t y ) ( ) ( )) ( ) ( ( ~ 2 1 2 1 t x t t x t t x t x t y t t t t t         ) ( ) ( 2 1 t x t t x t t t     ). ( ) ( 2 1 t y t y t t    
  • 15. Basic System Properties  About the linearity  Consider the input to the system is then the response is (i)  Then  The first set of equation suggests that  Exercise: Check the linearity of the following:  Using the methods adopted in the previous two excercises. ) ( ) ( 2 1 t x t x t t    where , ~ t y ) ( ) ( ), ( ) ( 2 2 2 1 2 1 t y t x t y t x   ) ( ) ( 2 ) ( ) ( )) ( ) ( ( ~ 2 1 2 2 2 2 1 2 2 2 1 t x t x t x t x t x t x y t t t t t t t            ) ( ) ( 2 ) ( ) ( ~ 2 1 2 2 1 2 t y t y t y t y y t t t t t        ) ( ) ( 2 2 1 2 t y t y t t     3 ) ( 2 ) (   n x n y